Yaqoob Nabeela, Khan Muhammad Attique, Masood Saleha, Albarakati Hussain Mobarak, Hamza Ameer, Alhayan Fatimah, Jamel Leila, Masood Anum
Department of Computer Science and Mathematics, Lebanese American University, Beirut, Lebanon.
IRC for Finance and Digital Economy, King Fahd University of Petroleum and Minerals, Dhahran, Saudi Arabia.
Front Comput Neurosci. 2024 Apr 25;18:1393849. doi: 10.3389/fncom.2024.1393849. eCollection 2024.
Alzheimer's disease (AD) is a neurodegenerative illness that impairs cognition, function, and behavior by causing irreversible damage to multiple brain areas, including the hippocampus. The suffering of the patients and their family members will be lessened with an early diagnosis of AD. The automatic diagnosis technique is widely required due to the shortage of medical experts and eases the burden of medical staff. The automatic artificial intelligence (AI)-based computerized method can help experts achieve better diagnosis accuracy and precision rates. This study proposes a new automated framework for AD stage prediction based on the ResNet-Self architecture and Fuzzy Entropy-controlled Path-Finding Algorithm (FEcPFA). A data augmentation technique has been utilized to resolve the dataset imbalance issue. In the next step, we proposed a new deep-learning model based on the self-attention module. A ResNet-50 architecture is modified and connected with a self-attention block for important information extraction. The hyperparameters were optimized using Bayesian optimization (BO) and then utilized to train the model, which was subsequently employed for feature extraction. The self-attention extracted features were optimized using the proposed FEcPFA. The best features were selected using FEcPFA and passed to the machine learning classifiers for the final classification. The experimental process utilized a publicly available MRI dataset and achieved an improved accuracy of 99.9%. The results were compared with state-of-the-art (SOTA) techniques, demonstrating the improvement of the proposed framework in terms of accuracy and time efficiency.
阿尔茨海默病(AD)是一种神经退行性疾病,通过对包括海马体在内的多个脑区造成不可逆损伤,损害认知、功能和行为。AD的早期诊断将减轻患者及其家属的痛苦。由于医学专家短缺,自动诊断技术的需求广泛,这减轻了医务人员的负担。基于人工智能(AI)的自动计算机化方法可以帮助专家获得更高的诊断准确率和精确率。本研究提出了一种基于ResNet-Self架构和模糊熵控制路径查找算法(FEcPFA)的AD阶段预测自动化新框架。采用数据增强技术来解决数据集不平衡问题。下一步,我们提出了一种基于自注意力模块的新型深度学习模型。对ResNet-50架构进行修改,并与自注意力块连接以提取重要信息。使用贝叶斯优化(BO)对超参数进行优化,然后用于训练模型,随后该模型用于特征提取。使用所提出的FEcPFA对自注意力提取的特征进行优化。使用FEcPFA选择最佳特征,并将其传递给机器学习分类器进行最终分类。实验过程使用了一个公开可用的MRI数据集,准确率提高到了99.9%。将结果与当前最先进的(SOTA)技术进行比较,证明了所提出框架在准确性和时间效率方面的改进。